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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Open-set face identification with index-of-max hashing by learning
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Open-set face identification with index-of-max hashing by learning

机译:通过学习的开放式面部识别,索引索引

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摘要

Large-scale face identification or 1-to-N matching where N is huge, plays a vital role in biometrics and surveillance. The system demands accurate and speedy matching where compact facial feature representation and a simple matcher are favored. On the other hand, most research considers closed-set identification that assumes that all identities of probe samples are enclosed in the gallery. On the contrary, openset identification expects that some probe identities are not known to the system. This setup poses an additional challenge, where the system should be able to reject those probes that correspond to unknown identities. In this paper, we address the large-scale open-set face identification problem with a compact facial representation that is based on the index-of-maximum (IoM) hashing, which was designed for biometric template protection. To be specific, the existing random IoM hashing is advanced to a data-driven based hashing technique, where the hashed face code can be made compact and matching can be easily performed by the Hamming distance, which can offer highly efficient matching. Furthermore, since IoM hashing transforms the original facial features non-invertibly, the privacy of users can also be preserved. Along with IoM hashed face code, we explore several fusion strategies to address the open-set face identification problem. The comprehensive evaluations are carried out with three large-scale unconstrained face datasets, namely LFW, VGG2 and UB-C. (C) 2020 Elsevier Ltd. All rights reserved.
机译:大规模的面部识别或1-n匹配在巨大的地方,在生物识别和监视中起着至关重要的作用。系统要求精确快捷的匹配,其中紧凑的面部特征表示和简单的匹配器受到青睐。另一方面,大多数研究都考虑了闭合定义识别,假设探针样本的所有标识都括在画廊中。相反,OpenSet识别期望系统未知一些探针标识。此设置构成了额外的挑战,其中系统应该能够拒绝对应于未知身份的探针。在本文中,我们通过基于最大索引(IOM)散列的紧凑型面部表示来解决大型开放式面部识别问题,这是为生物识别模板保护而设计的。具体而言,现有的随机IOM散列向基于数据驱动的散列技术进行了高级,其中可以使哈希面代码紧凑并且可以通过汉明距离容易地进行匹配,可以提供高效的匹配。此外,由于IOM散列不可逆地转换原始面部特征,因此也可以保留用户的隐私。随着IOM散列的面部代码,我们探索了几种融合策略来解决开放式面部识别问题。综合评估由三个大规模的无约束面部数据集进行,即LFW,VGG2和UB-C。 (c)2020 elestvier有限公司保留所有权利。

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